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生态学杂志 ›› 2024, Vol. 43 ›› Issue (5): 1488-1497.doi: 10.13292/j.1000-4890.202405.005

• 技术与方法 • 上一篇    下一篇

基于土壤氮素水平的玉米冠层SPAD值估算方法

运彬媛,张昊,翟勇全,马健祯,姬丽,李稼润,金学兰,贾彪*   

  1. (宁夏大学农学院, 银川 750021)
  • 出版日期:2024-05-10 发布日期:2024-07-10

Estimation method for canopy SPAD values of maize based on soil nitrogen level.

YUN Binyuan, ZHANG Hao, ZHAI Yongquan, MA Jianzhen, JI Li, LI Jiarun, JIN Xuelan, JIA Biao*   

  1. (School of Agriculture, Ningxia University, Yinchuan 750021, China).
  • Online:2024-05-10 Published:2024-07-10

摘要: 通过机器学习方法结合近地面遥感图像参数建立高精度的玉米冠层叶片SPAD估算模型,及时了解玉米冠层叶片叶绿素含量状况,以期达到玉米田块氮肥精细管理、减量少施以及氮素营养快速诊断的目的。本研究采用大疆四旋翼航测无人机挂载数码相机,获取2年6个氮素水平下玉米拔节期至吐丝期的冠层植被指数,分析冠层植被指数与SPAD值的相关性,运用单变量回归(UR)、多元回归(MR)和基于主成分分析的BP神经网络算法(PCA-BP)分别构建玉米SPAD估算模型,筛选最优模型并检验。结果表明:在玉米吐丝期,与SPAD显著相关的植被指数有10个,相关性较高的依次有红光标准化值(NRI)、蓝红比值指数(BRRI)、差值植被指数(DVI)和归一化叶绿素比值植被指数(NPCI),均在0.80以上;分别构建这4个指标的线性、对数、指数和幂函数模型,效果最好的是以NPCI为自变量的幂函数模型,其R2为0.748;基于PCA-BP神经网络构建的SPAD值估算模型精度最高,R2为0.818,其次是多元逐步回归模型,单变量回归模型最低。经检验可知,基于PCA-BP神经网络模型对SPAD的估测值与实测值最为接近,R2为0.830,RMSE为0.542,nRMSE为0.89%,预测效果最佳。研究表明,基于PCA-BP神经网络的玉米冠层SPAD值估测模型准确度高,可为无人机图像参数估算玉米冠层SPAD值提供新方法。


关键词: 玉米, SPAD, 冠层植被指数, 土壤氮素, PCA-BP神经网络

Abstract: Establishing high-precision SPAD estimation model by machine learning method combined with near-surface remote sensing image parameters based on maize canopy spectral information can provide timely and reliable data of chlorophyll content of leaves in maize canopy. Such a model would facilitate accurate management of nitrogen fertilization in maize fields, reduction of nitrogen fertilizer application, and rapid diagnosis of nitrogen nutrition. The canopy vegetation index from maize jointing to silking stage under six N application levels was obtained by Dajiang four-rotor aerial UAV equipped with digital camera in two years. The correlation between vegetation index and SPAD were analyzed. Univariate regression (UR), multiple regression (MR) and BP neural network algorithm based on principal component analysis (PCA-BP) were established to estimate the SPAD values, and the optimal model was selected and verified after that. The results showed that there were 10 canopy vegetation indices that were significantly correlated with SPAD at the silking stage of maize, and that the normalized redness intensity (NRI), blue-red ratio index (BRRI), difference vegetation index (DVI) and normalized pigment chlorophyll ratio index (NPCI) had higher correlations of above 0.80. The linear, logarithmic, exponential, and power function models of the four indices were constructed. Among those models, the power function model established by NPCI was the best one with the determination coefficient R2 of 0.748. The accuracy of the model based on the PCA-BP neural network was the highest (R2=0.818), followed by multiple stepwise regression model, and the univariate regression model had the lowest accuracy. The verification results showed that the estimated value of SPAD based on PCA-BP neural network model was the closest to the measured value with R2 of 0.830, RMSE of 0.542, nRMSE of 0.89%, and the prediction effect was the best. In conclusion, the maize canopy SPAD estimation model based on PCA-BP neural network has high accuracy and can provide a new method for the estimation of maize canopy SPAD based on UAV image parameters.


Key words: maize, SPAD, canopy vegetation index, soil nitrogen,  , PCA-BP neural network